GendataLGM {MFSIS} | R Documentation |
Generate simulation data (Binary category data based on logistic model)
Description
This function helps you quickly generate simulation data based on logistic model. You just need to input the sample and dimension of the data you want to generate and the covariance parameter rho.
Usage
GendataLGM(n, p, rho, beta = c(rep(1, 5), rep(0, p - 5)))
Arguments
n |
Number of subjects in the dataset to be simulated. It will also equal to the number of rows in the dataset to be simulated, because it is assumed that each row represents a different independent and identically distributed subject. |
p |
Number of predictor variables (covariates) in the simulated dataset. These covariates will be the features screened by model-free procedures. |
rho |
The correlation between adjacent covariates in the simulated matrix X. The within-subject covariance matrix of X is assumed to has the same form as an AR(1) auto-regressive covariance matrix, although this is not meant to imply that the X covariates for each subject are in fact a time series. Instead, it is just used as an example of a parsimonious but nontrivial covariance structure. If rho is left at the default of zero, the X covariates will be independent and the simulation will run faster. |
beta |
A vector with length of n, which are the coefficients that you want to generate about Linear model. The default is beta=(1,1,1,1,1,0,...,0)^T; |
Value
the list of your simulation data
Author(s)
Xuewei Cheng xwcheng@hunnu.edu.cn
Examples
n <- 100
p <- 200
rho <- 0.5
data <- GendataLGM(n, p, rho)